He Xiaolan, Xu Zhengyang, Ren Ruiping, Wan Peng, Zhang Yu, Wang Liangliang, Han Ying
Department of Chemoradiotherapy, The Affiliated People's Hospital of Ningbo University, Ningbo, China.
Heliyon. 2023 Dec 12;10(1):e23659. doi: 10.1016/j.heliyon.2023.e23659. eCollection 2024 Jan 15.
Sphingolipid metabolism affects prognosis and resistance to immunotherapy in patients with cancer and is an emerging target in cancer therapy with promising diagnostic and prognostic value. Long noncoding ribonucleic acids (lncRNAs) broadly regulate tumour-associated metabolic reprogramming. However, the potential of sphingolipid metabolism-related lncRNAs in pancreatic adenocarcinoma (PAAD) is poorly understood. In this study, coexpression algorithms were employed to identify sphingolipid metabolism-related lncRNAs. The least absolute shrinkage and selection operator (LASSO) algorithm was used to develop a sphingolipid metabolism-related lncRNA signature (SMLs). The prognostic predictive stability of the SMLs was validated using Kaplan-Meier. Univariate and multivariate Cox, receiver operating characteristic (ROC) and clinical stratification analyses were used to comprehensively assess the SMLs. Gene set variation analysis (GSVE), gene ontology (GO) and tumor mutation burden (TMB) analysis explored the potential mechanisms. Additionally, single sample gene set enrichment analysis (ssGSEA), ESTIMATE, immune checkpoints and drug sensitivity analysis were used to investigate the potential predictive function of the SMLs. Finally, an SMLs-based consensus clustering algorithm was utilized to differentiate patients and determine the suitable population for immunotherapy. The results showed that the SMLs consists of seven sphingolipid metabolism-related lncRNAs, which can well determine the clinical outcome of individuals with PAAD, with high stability and general applicability. In addition, the SMLs-based consensus clustering algorithm divided the TCGA-PAAD cohort into two clusters, with Cluster 1 showing better survival than Cluster 2. Additionally, Cluster 1 had a higher level of immune cell infiltration than Cluster 2, which combined with the higher levels of immune checkpoints in Cluster 1 suggests that Cluster 1 is more consistent with an immune 'hot tumor' profile and may respond better to immune checkpoint inhibitors (ICIs). This study offers new insights regarding the potential role of sphingolipid metabolism-related lncRNAs as biomarkers in PAAD. The constructed SMLs and the SMLs-based clustering are valuable tools for predicting clinical outcomes in PAAD and provide a basis for clinical selection of individualized treatments.
鞘脂代谢影响癌症患者的预后和免疫治疗耐药性,是癌症治疗中一个具有潜在诊断和预后价值的新兴靶点。长链非编码核糖核酸(lncRNAs)广泛调节肿瘤相关的代谢重编程。然而,鞘脂代谢相关lncRNAs在胰腺腺癌(PAAD)中的潜在作用尚不清楚。在本研究中,采用共表达算法来识别鞘脂代谢相关lncRNAs。使用最小绝对收缩和选择算子(LASSO)算法开发了一种鞘脂代谢相关lncRNA特征(SMLs)。使用Kaplan-Meier法验证SMLs的预后预测稳定性。采用单因素和多因素Cox分析、受试者工作特征(ROC)分析和临床分层分析对SMLs进行综合评估。基因集变异分析(GSVE)、基因本体(GO)和肿瘤突变负担(TMB)分析探索了潜在机制。此外,使用单样本基因集富集分析(ssGSEA)、ESTIMATE、免疫检查点和药物敏感性分析来研究SMLs的潜在预测功能。最后,利用基于SMLs的共识聚类算法对患者进行区分,并确定适合免疫治疗的人群。结果表明,SMLs由7种鞘脂代谢相关lncRNAs组成,能够很好地确定PAAD患者的临床结局,具有高稳定性和普遍适用性。此外,基于SMLs的共识聚类算法将TCGA-PAAD队列分为两个簇,簇1的生存率高于簇2。此外,簇1的免疫细胞浸润水平高于簇2,这与簇1中较高水平的免疫检查点相结合,表明簇1更符合免疫“热肿瘤”特征,可能对免疫检查点抑制剂(ICIs)反应更好。本研究为鞘脂代谢相关lncRNAs作为PAAD生物标志物的潜在作用提供了新的见解。构建的SMLs和基于SMLs的聚类是预测PAAD临床结局的有价值工具,并为临床选择个体化治疗提供了依据。